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Learning-Based Prediction of Soft-Tissue Motion for Latency Compensation in Teleoperation

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摘要 Soft-tissue motion introduces significant challenges in robotic teleoperation,especially in medical scenarios where precise target tracking is critical.Latency across sensing,computation,and actuation chains leads to degraded tracking performance,particularly around high-acceleration segments and trajectory inflection points.This study investigates machine learning-based predictive compensation for latency mitigation in soft-tissue tracking.Three models—autoregressive(AR),long short-term memory(LSTM),and temporal convolutional network(TCN)—were implemented and evaluated on both synthetic and real datasets.By aligning the prediction horizon with the end-to-end system delay,we demonstrate that prediction-based compensation significantly reduces tracking errors.Among the models,TCN achieved superior robustness and accuracy on complex motion patterns,particularly in multi-step prediction tasks,and exhibited better latency–horizon compatibility.The results suggest that TCN is a promising candidate for real-time latency compensation in teleoperated robotic systems involving dynamic soft-tissue interaction.
出处 《Computer Modeling in Engineering & Sciences》 2026年第1期1051-1074,共24页 工程与科学中的计算机建模(英文)
基金 Support by Sichuan Science and Technology Program[2023YFSY0026,2023YFH0004] Guangzhou Huashang University[2024HSZD01,HS2023JYSZH01].
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